Simple and Nearly-Optimal Sampling for Rank-1 Tensor Completion via Gauss-Jordan
Abstract: We revisit the sample and computational complexity of completing a rank-1 tensor in $\otimes_{i=1}{N} \mathbb{R}{d}$, given a uniformly sampled subset of its entries. We present a characterization of the problem (i.e. nonzero entries) which admits an algorithm amounting to Gauss-Jordan on a pair of random linear systems. For example, when $N = \Theta(1)$, we prove it uses no more than $m = O(d2 \log d)$ samples and runs in $O(md2)$ time. Moreover, we show any algorithm requires $\Omega(d\log d)$ samples. By contrast, existing upper bounds on the sample complexity are at least as large as $d{1.5} \mu{\Omega(1)} \log{\Omega(1)} d$, where $\mu$ can be $\Theta(d)$ in the worst case. Prior work obtained these looser guarantees in higher rank versions of our problem, and tend to involve more complicated algorithms.
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